- Cross-Correlation Function: It is a measure of similarity of two series as a displacement of one relative to another.
- Transfer Function Models: Transfer model methods like autoregressive can be utilized to calculate the correlation between two time series.
How to calculate correlation between two series with high autocorrelation
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two series with high autocorrelation, so the degree of freedom is decline. Using t-test to estimate the p-value, they are easy to achieve a high significance level. How to adjusted the correlation coefficient that considers their autocorrelation (degree of freedom)? Or, estimate the significance of p-value? In terms of later, I know a solution than calculate effective sample size, nadj = n.*(1-r1.*r2)./(1+r1.*r2); the r1 and r2 are the lag1 autocorrelations of the two series. This solution calculated a very low effective sample size for a high autocorrelation. make it impossible to correlation. But from the plot, I think the two series are correlate significantly. For a better solution, I want to know if there is some correlation coefficient that adjusted for autocorrelation series? Or, another methods for estimating correlation of two sereies that highly autocorrelated.
I have a two series with length of 99, the r= 0.5282, p=3.19e-8, but they are autocorrelated. Acoording to the effective sample size, which is 2.3247, the adjust p value is 0.845. I think the two series are correlated, but after consider the autocorrelation, they are not correlated.
The following is an example of data, with a shorter length.
data1 =[-0.2433 -0.2509 -0.2539 -0.2522 -0.2462 -0.2358 -0.2214 -0.2032 -0.1817 -0.1571 -0.1297 -0.1000 -0.0682 -0.0346 0.0005 0.0368 0.0740 0.1120 0.1504 0.1891];
data2 =[ -1.0213 -1.0088 -0.9919 -0.9707 -0.9452 -0.9155 -0.8816 -0.8437 -0.8021 -0.7570 -0.7088 -0.6577 -0.6041 -0.5487 -0.4917 -0.4339 -0.3757 -0.3176 -0.2604 -0.2046];
[rho,pval] = corr(data1', data2'); % rho = 0.9933, pval = 2.5766e-18
n = length(data1);
r1 = autocorr(data1,1);
r1 = r1(2);
r2 = autocorr(data2,1);
r2 = r2(2);
nadj = n.*(1-r1.*r2)./(1+r1.*r2); % nadj is effective sample size, nadj = 3.0023
t_stat = rho * sqrt((nadj - 2) / (1 - rho^2));
padj = 2 * (1 - tcdf(abs(t_stat), nadj - 2)); % considering effective sample size,according to t-test, the padj = 0.0734
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Drishti
am 6 Sep. 2024
Hi Time,
The alternative work arounds to estimate the correlation of two highly correlated series are:
In MATLAB, you can utilize the ‘xcorr' function to calculate the cross-correlation of two discrete time series.
Please refer to the example demonstrating ‘xcorr’ function:
% Sample time series data
A = [1, 2, 3, 4, 5];
B = [2, 3, 4, 5, 6];
% Calculate cross-correlation
[c, lags] = xcorr(A, B);
For more information, you can refer to the MATLAB Documentation of ‘xcorr’ function.
Hope this helps.
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